# converting irregular grid to regular grid

I have a set of observation in irregular grid. I want to have them in regular grid with resolution of 5. This is an example :

``````d <- data.frame(x=runif(1e3, 0, 30), y=runif(1e3, 0, 30), z=runif(1e3, 0, 30))

## interpolate xy grid to change irregular grid to regular

library(akima)

d2 <- with(d,interp(x, y, z, xo=seq(0, 30, length = 500),
yo=seq(0, 30, length = 500), duplicate="mean"))
``````

how can I have the `d2` in `SpatialPixelDataFrame` calss? which has 3 colomns, coordinates and interpolated values.

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You can use code like this (thanks to the comment by @hadley):

``````d3 <- data.frame(x=d2\$x[row(d2\$z)],
y=d2\$y[col(d2\$z)],
z=as.vector(d2\$z))
``````

The idea here is that a matrix in R is just a vector with a bit of extra information about its dimensions. The `as.vector` call drops that information, turning the 500x500 matrix into a linear vector of length 500*500=250000. The subscript operator `[` does the same, so although `row` and `col` originally return a matrix, that is treated as a linear vector as well. So in total, you have three matrices, turn them all to linear vectors with the same order, use two of them to index the `x` and `y` vectors, and combine the results into a single data frame.

My original solution didn't use `row` and `col`, but instead `rep` to formulate the `x` and `y` columns. It is a bit more difficult to understand and remember, but might be a bit more efficient, and give you some insight useful for more difficult applications.

``````d3 <- data.frame(x=rep(d2\$x, times=500),
y=rep(d2\$y, each=500),
z=as.vector(d2\$z))
``````

For this formulation, you have to know that a matrix in R is stored in column-major order. The second element of the linearized vector therefore is `d2\$z[2,1]`, so the rows number will change between two subsequent values, while the column number will remain the same for a whole column. Consequently, you want to repeat the `x` vector as a whole, but repeat each element of `y` by itself. That's what the two `rep` calls do.

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I think `data.frame(x = d2\$x[row(d2\$z)], y = d2\$y[col(d2\$z)], ...)` is slightly clearer. –  hadley Jan 15 at 13:45